A model for revocation forecasting in public-key infrastructures

作者:Carlos Gañán, Jorge Mata-Díaz, Jose L. Muñoz, Oscar Esparza, Juanjo Alins

摘要

One of the hardest tasks of a certification infrastructure is to manage revocation. This process consists in collecting and making the revocation status of certificates available to users. Research on this topic has focused on the trade-offs that different revocation mechanisms offer. Much less effort has been conducted to understand and model real-world revocation processes. For this reason, in this paper, we present a novel analysis of real-world collected revocation data and we propose a revocation prediction model. The model uses an autoregressive integrated moving average model. Our prediction model enables certification authorities to forecast the number of revoked certificates in short term.

论文关键词:Certification, PKI, Revocation, CRL, ARIMA

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论文官网地址:https://doi.org/10.1007/s10115-014-0735-1